4.6 Article

Power Quality Disturbances Detection and Classification Based on Deep Convolution Auto-Encoder Networks

期刊

IEEE ACCESS
卷 11, 期 -, 页码 46026-46038

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/ACCESS.2023.3274732

关键词

Feature extraction; Power quality; Convolution; Neural networks; Deep learning; Decoding; Support vector machines; Power quality monitoring; power quality disturbance; deep auto-encoders; optimal feature extraction; power quality event detection

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Power quality issues need to be properly addressed in the forthcoming era of smart meters, smart grids, and increased integration of renewable energy. This paper proposes the use of Deep Auto-encoder (DAE) networks for power quality disturbance (PQD) classification and location detection, without the need for complex signal processing techniques and classifiers. The proposed method shows excellent classification accuracy for PQD, compared to other methods, and requires smaller data sets and less computation time.
Power quality issues are required to be addressed properly in forthcoming era of smart meters, smart grids and increase in renewable energy integration. In this paper, Deep Auto-encoder (DAE) networks is proposed for power quality disturbance (PQD) classification and its location detection without using complex signal processing techniques and complex classifiers. In this technique, Gabor filter is used to extract a set of general Gabor features from the convolution of PQD image. Subsequently, through sparse based DAE network, essential and optimal features are extracted and learnt which are used by a simple classifier (SoftMax) to classify the PQD type. Furthermore, the temporal information of the PQD is obtained using the PQD image to correctly locate the disturbance's initiating and terminating instants. The proposed DAE network has the benefits of Deep Learning-based networks in terms of automatic feature selection, but it requires smaller data sets. The issue of obtaining optimised, robust, and strong features from the PQD signal is thus resolved. Excellent classification accuracy of PQD is obtained with appropriate network parameter setting of the proposed DAE network. The proposed technique is compared with three other methods i.e. support vector machine (SVM), stacked auto-encoder (SAE) and principal component analysis (PCA) for PQD classification by implementing all the four techniques on python platform using the same data set. It has an overall classification accuracy of more than 97% at a signal to noise ratio (SNR) of 20dB, which is on the higher side when compared to other methods of PQD detection under noisy environment. Additionally, this method requires less computation time with the same data set than alternative approaches like SVM. Thus, the proposed method outperforms existing methods for PQD classification and detection of single disturbance and multi-disturbance in terms of greater accuracy and reduced computation complexity and computation time.

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